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Online Relation Alignment for Linked Datasets

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Academic year: 2021

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Figure 1 shows SORAL, consisting of two main steps. First, for a source relation and source dataset, we generate candidate relations for alignment to a target dataset.
Table 1: The performance of SORAL for the different sampling strategies and sizes.
Table 1 shows the sampling strategies presented in Section 5.2. In the case of the stratified sampling we construct the strata based on the DBpedia type taxonomy with a depth level from 2 up to 5 (DBpedia has a maximum depth level of 7)
Figure 2: Feature ablation for the different feature groups.

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